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A performance evaluation of defect detection by using Denoising AutoEncoder Generative Adversarial Networks

机译:使用去噪自动化器生成对抗网络进行缺陷检测的性能评估

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In this paper, we discuss a method to detect defects in industrial products by using Denoising AutoEncoder Generative Adversarial Networks. In previous methods, a defective area is detected by restoring a defective product image which added an artificial defect to a non-defective product image by Denoising AutoEncoder (DAE). Therefore, a defective area is detected by subtracted image of them. We discuss whether further accuracy improvement is possible by introducing a framework of adversarial learning to DAE in order to restore a defective image to a non-defective image clearer.
机译:在本文中,我们讨论了通过使用去噪的自动化剂生成的对抗网络来检测工业产品缺陷的方法。在先前的方法中,通过恢复缺陷的产品图像来检测缺陷区域,该产品图像通过去噪自身偏离(DAE)向非缺陷产品图像添加了对非缺陷的产品图像。因此,通过减去它们的图像来检测缺陷区域。我们讨论是否通过向DAE引入对抗的框架来讨论进一步的准确性改进,以便将缺陷图像恢复到非缺陷图像更清晰。

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